Content-driven information lifecycle management

ABSTRACT

A method, article of manufacture, and apparatus for managing a lifecycle of an object are disclosed. In an embodiment, this comprises analyzing the content of the object and associating the object to an information lifecycle management policy based on the content analysis and metadata. Metadata may be generated based on the content analysis, and used in setting the information lifecycle management policy. A date of disposition may be associated with the object, and actions in the ILM policy taken on the date of disposition.

CROSS REFERENCE TO RELATED APPLICATIONS

This application is a continuation of and claims priority to U.S. patent application Ser. No. 10/884,345 for METHOD AND SYSTEM FOR INFORMATION LIFECYCLE MANAGEMENT, filed Jul. 1, 2004 now U.S. Pat. No. 7,499,531, which is incorporated herein by reference for all purposes.

FIELD OF THE INVENTION

This invention relates generally to storage management. More particularly, information lifecycle management using content analysis is described.

BACKGROUND

Businesses and other enterprises generate large amounts of information, which must be stored in a cost-effective manner while ensuring acceptable levels of availability, security, and accessibility. Different types of data have different storage requirements. Stored information is currently managed through a set of manual, automatic, or semi-automatic policies, procedures, and practices. These methods are applied in a variety of ways to a variety of data and data storage systems. For example, the methods can be applied to a specific volume, storage array, object, file, folder, database, or file/data types. When an ILM (Information Lifecycle Management) managed system sets the retention period, storage prioritization, deletion date, etc. of a specific file or object, it typically does so based on one or more criteria, such as date of the file's creation, type of file, location of the file, date of the file's last use, etc.

However, such criteria are generally quite coarse and fail to give enough information to accurately characterize the proper treatment of the file or object. Thus, the ability of a system to automatically or autonomously determine ILM settings for specific data is limited. As a result, some files or objects are not handled efficiently or in the desired manner. For example, some files may be discarded or moved to off-line storage when it is desirable to retain them, while other files are retained when it is desirable to discard them or move them to off-line storage.

There is a need, therefore, for an improved method, article of manufacture, and apparatus for managing the lifecycle of files and other objects in a storage system.

BRIEF DESCRIPTION OF THE DRAWINGS

The present invention will be readily understood by the following detailed description in conjunction with the accompanying drawings, wherein like reference numerals designate like structural elements, and in which:

FIG. 1 is a diagram of an information management system;

FIG. 2 is a flowchart illustrating information management using content analysis to set policies;

FIG. 3 illustrates several layers through which data may pass;

FIG. 4 is a diagram of an information management system being used with a hierarchical storage management system;

FIG. 5 is a flowchart illustrating processing of objects using a dynamic policy selector; and

FIG. 6 is a diagram of a dynamic policy selector with a policy manager and policy scheduler.

DESCRIPTION OF THE INVENTION

A detailed description of one or more embodiments of the invention is provided below along with accompanying figures that illustrate the principles of the invention. While the invention is described in conjunction with such embodiment(s), it should be understood that the invention is not limited to any one embodiment. On the contrary, the scope of the invention is limited only by the claims and the invention encompasses numerous alternatives, modifications, and equivalents. For the purpose of example, numerous specific details are set forth in the following description in order to provide a thorough understanding of the present invention. These details are provided for the purpose of example, and the present invention may be practiced according to the claims without some or all of these specific details. For the purpose of clarity, technical material that is known in the technical fields related to the invention has not been described in detail so that the present invention is not unnecessarily obscured.

It should be appreciated that the present invention can be implemented in numerous ways, including as a process, an apparatus, a system, a device, a method, or a computer readable medium such as a computer readable storage medium or a computer network wherein program instructions are sent over optical or electronic communication links. A general purpose computer system such as an Intel-based processor running Microsoft Windows or Linux may be used, or a specialized appliance could be used. In this specification, these implementations, or any other form that the invention may take, may be referred to as techniques. In general, the order of the steps of disclosed processes may be altered within the scope of the invention.

An embodiment of the invention will be described with reference to an information management system in the form of a storage system configured to store files, but it should be understood that the principles of the invention are not limited to data storage systems. Rather, they are applicable to any system capable of storing and handling various types of objects, in analog, digital, or other form. Although terms such as document, file, object, etc. may be used by way of example, the principles of the invention are not limited to any particular form of representing and storing data or other information; rather, they are equally applicable to any object capable of representing information.

Disclosed herein are a method and system to manage the information lifecycle of an object in a storage system. In particular, the foregoing will be described with respect to FIG. 1. An information management system 10 comprises a storage system 26 including storage units 28 in the form of disk drives, content analysis engine 22, information lifecycle management (ILM) policy manager engine 16, an application system 12, and a data transport 20. As shown by various storage devices 14, 18, and 24, any of the foregoing systems may include storage, such as for metadata or metadata index repository.

The method, illustrated in FIG. 2, comprises analyzing the content of the object in step 70, and based on the content analysis, determining the ILM (or simply IM, for “information management”) policy or policies to be applied to the object, step 72. The type of the object (which may be determined from metadata associated with the object) and/or the metadata may be used in determining the ILM policy to be applied. The ILM policy is associated with the object, step 74, and in step 76, the ILM policy is implemented for that object (which may involve moving the object, quarantining the object, making multiple copies, scheduling backups, etc.).

One approach to managing the information lifecycle of a stored file is to set a number of ILM policies, and apply those policies to files that meet the criteria for applying the policies. ILM policies may include quarantine of particular subject matter (such as prohibited material or material relevant to an ongoing investigation) for further review or limited access, workflow, service level (such as bandwidth, performance, latency, etc.), security (such as encryption, level of encryption, access control), information protection level (such as frequency of backup, redundancy of data), availability (such as failover, standby server, etc.), archive, physical location, provisioning (such as adding or configuring storage), and so on.

For example, the date of last use of the data is sometimes used to determine a file's relative importance. Data can be moved to a secondary storage location, to offline storage, or even deleted depending on the date of last use. However, this method may be too coarse because it does not take into account other factors besides the date of last use. Certain accounting files may not be used for a quarter but then are needed at the end of the period for specific reporting purposes. Other files may be used in six month intervals or yearly. When they are used, they need to be immediately available and have a high level of service associated with them, perhaps at least equal to their original service level.

Other information may be used in order to characterize the data, such as the file's owner, date of creation, file type, file size, and so on. These are useful in better characterizing the data but alone do not provide sufficient information in order to create automatic or autonomous ILM systems. For example, knowing that the owner of a file is in the accounting department and that the file is an Excel spreadsheet could be used to make service level decisions or determine whether the file should be deleted at a particular time. However, the system cannot determine from this information whether the file is an important revenue-tracking spreadsheet used as a basis for financial statements subject to regulatory compliance procedures (which might be subject to Sarbanes-Oxley and SEC retention requirements), or a spreadsheet used to keep track of people who will be attending a holiday party (which is of minimal importance and can be deleted soon). Outside of the specific content of data, there are few characteristics about the data that can be used to correctly set an appropriate ILM policy.

A factor that must be considered is the requirement to retain data in response to corporate, industry, and governmental laws and regulations. This makes it more critical to accurately characterize the ILM policies that need to be applied to the data, and because of the legal implications, there is a tendency to be over-inclusive. As has been illustrated, knowing the particular owner of a file, its type, date of creation, and date of last use may not be sufficient to make a useful decision with regard to compliance retention or disposal. The result is needless retention of large amounts of data, which also becomes problematic when there is a need to quickly locate and retrieve relevant data.

The content of the data gives a better indication of how the data should be handled from an ILM standpoint. Through the analysis of the data content, more information can be derived and ILM policies can be appropriately created and applied. For example, quarterly and yearly reports may be identified by keywords/phrases within the documents which indicate that they are quarterly/yearly reports. Additional analysis can reveal what type of report, the reporting period, author, etc. This information may be combined with file metadata such as the file's owner, date of creation, and file type to set an appropriate and meaningful ILM policy.

Content can also be used to determine the appropriate retention/deletion policy. For example, if an object contains certain keywords/phrases relating to a patient's diagnosis and/or contains personal health information, then the object may need to be retained as long as the patient's medical records. On the other hand, if the object does not contain such content, it may be found not to require long term retention, and an appropriate ELM policy can be set, such as deletion in a short time period. By evaluating the object's content directly, the correct retention period may be programmatically determined with more accuracy.

The type of data contained by an object may be determined from metadata accompanying the object, which could comprise information provided by the application that created the object, information from the user who created the object, and/or filesystem information. Pattern matching to known file patterns may also be used to determine the file type. The information about the type of data contained by the object can be used to analyze its contents, thereby deriving information to set an appropriate ILM policy.

For example, simply knowing or determining that a file is a video file is useful but not as meaningful in terms of determining the appropriate ILM policy. Knowing who or what is depicted in the video, and other relevant information regarding the subject matter and/or content of the video itself, provides meaningful data that can be used in combination with file metadata to set an appropriate ILM policy.

Content evaluation may be performed on various file types, such as video, audio, graphics (e.g. bitmaps), text, and encrypted data. Content analysis on a video file (or any file that contains video) would involve evaluation of the video images themselves to determine who, where, and what images are depicted. Based on this information, which is derived from the analysis done on the video images, ILM policies are set. An audio file or the audio portion of a file or data set may be analyzed to determine the identity of the speaker and what was said. In addition to analysis of speech data, other forms of audio analysis can be used, such as determining if the audio is music and what type of music. Other sounds include sounds associated with events and places such as explosions, glass breaking, gun shots, screams, automobile traffic, boat/ship/airplane sounds, cash registers opening/closing/tallying, etc.

Graphics and bitmaps like video images, graphic files, and graphic data sets can be evaluated for their content such as who and what are depicted as well as where and how. Text and other forms of document rendition can be analyzed for the presence or absence of certain keywords and phrases. In evaluating data, it can be determined whether the data is encrypted. In cases of encrypted data, different policies could be applied to data encrypted by the host system and files encrypted by unknown systems.

For example, the data may be in the form of an audio object or comprise an audio portion in an object. An auditory processing system (either integrated into the information management system or separate from it) could be used to identify words and/or sounds, using a lexicon and searching for matches. In an embodiment, the auditory processing system could compare the content to a list of elements specified in a lexicon that comprises a group of data elements consisting of auditory elements or representations of audio elements (keywords) associated to text or other data elements. Upon detection of content that matches lexicon content, metadata may be generated and associated with the content. Such metadata may be the text equivalent of the auditory content or it may be a pointer to other data held within the lexicon. The search for keywords and sound matches could specify:

-   -   The order of the appearance/sequence (e.g., “Buy” followed by         “Stock”)     -   Specific inter-keyword distance (“Buy” followed by “Stock” as         the next word)     -   The number of repetitions within a timeframe or communication         session     -   The inverse of the above:         -   Keywords are present but not in the specific sequence         -   Keywords are present but not within the inter-keyword             distance         -   Keywords are present but not repeated within specification     -   The absence of the keyword(s); i.e. a non-match or negative         match     -   Groups of keywords

The information management system can be configured to retain audio objects until a specified disposition date, which may be determined by keywords identified in the audio object or policies invoked by the audio object. For example, after the system receives the audio object, it might retain the audio object for 90 days, but if the audio object contains certain triggering keywords or sounds, or triggers certain policies, the audio object might be retained for seven years.

Metadata relating to the audio object may also be used by the system to determine the disposition and disposition date. If an audio object were determined to be a recording of a phone call (such as by examining the metadata) involving a corporate insider, and words such as “buy stock” were detected in the recording, the audio object might be given a longer retention period. In an embodiment, the detection of keywords and triggering of corporate policies could be determined by an auditory processing system, which would provide an audio object with metadata indicating keywords detected and policies triggered. The metadata may be used to select appropriate ILM policies. These tasks may be performed by either the information management system or auditory processing system.

The disposition(s) and disposition date(s) may be stored with the audio object or separately from the audio object. Upon reaching the disposition date (or expiration date), the stored audio object and associated metadata may be partially or completely destroyed. Other types of processing and disposition may be invoked upon reaching the expiration date, such as hierarchical storage management functions (e.g., moving the data from disk drive media to optical or tape media), bit rate, encryption, application of digital rights management services, service level agreements, and other services associated with information lifecycle management. This processing may be performed by the information management system or other system.

FIG. 4 illustrates a hierarchical storage management (HSM) system being used in conjunction with information management system 30. An online storage system 40 comprises high-speed, reliable storage devices 42, while a near-line storage system 50 comprises slower storage devices 52 that may have lower redundancy and reliability, but are less costly than the high-speed devices 42. An archival device 60 may comprise tape drives 62, magneto-optical drives (not shown), optical drives (not shown), or other devices suitable for long-term storage of data. Depending on a service level assigned to a object and other factors such as recent usage, it may be located on online storage 40, near-line storage 42, or archive device 60. Parts of the object may be located on different devices at different levels in the HSM system.

Metadata may be generated to describe the object's content. The metadata may be transient data that is derived each time an evaluation is required, or may be fixed data that, once derived, remains in some form storage for repeated use without requiring further analysis of the content. The metadata may be generated in several ways, which may be used together. Metadata may be associated with an object, stored with the object or separately from the object and referenced by an index, hash, address, link, etc. The metadata may comprise file metadata (e.g. file type, user/creator, data, size, last used, creation date, application), transport metadata, and storage metadata.

FIG. 3 illustrates several layers through which data might pass: an application layer, a transport layer, and a storage layer. Each of these layers provides an opportunity for the information management system 10 to derive metadata.

In an embodiment, metadata may be generated at the application layer. In this case, data about the content (metadata) is created through the application that uses and/or creates the content itself. The creation of the metadata can be done manually, by the user, or automatically through various programmatic methods, or some combination of manual and automatic methods. For example, a video editing application typically enables users to create, edit, modify/alter, or otherwise manipulate video files (which typically also contain an embedded audio portion). In an embodiment, the video editing application may be configured to accommodate metadata about the video and audio content. In this case as an example, the following information could be captured as metadata of the underlying video file:

Time and Date Data

-   -   Time/date of original creation     -   Time/date of each editing session (whether or not the video was         edited)     -   Date and length of time spent editing per session     -   Time/date of last use

User Data

-   -   Original creator's name or user name     -   Editor's name or user name

Application and OS Data

-   -   Application name and version number per use/edit     -   Operating system used per use/edit     -   System ID (computer ID) per use/edit

File Data

-   -   File type and metrics (such as video type, size of file)     -   Original file name and type (if saved as a different file type         or under a different name)

Content Data

-   -   Number and ID of clips used to create the entire video (and         their associated file names and paths including audio)     -   Scene change index or locations (index into the video file to         each scene change)     -   Audio content index (index into the video file to specific         points which contain relevant audio elements such as music,         voice, distinctive sounds, etc.)     -   Transcription and/or keyword data (a textual rendition of speech         and/or speech elements such as keywords, phrases, or utterances         contained in the video file)     -   Scene descriptions (a textual description of the scenes and/or         frames contained in the video file including location of the         scene information, identities of the people, animals, objects,         etc. included in the scenes)

This information can be captured by the application through a variety of means and through a combination of a variety of means. The information can be manually entered by an individual, programmatically derived, or some combination of these. In one embodiment, data relating to the file, OS, application, system data, date/time, etc. may be derived by the application. Content data may also be derived by the application. For example, transcriptions of audio portions containing speech may be rendered through the use of automatic speech recognition applications. Such applications provide programmatic renditions of speech into text.

Similarly, video recognition applications and other video analysis applications can also provide data that describes the content and can be used as metadata. Keyword analysis may be applied to text-based content.

In an embodiment, the user may also directly provide these descriptive data elements. A user can manually transcribe the speech portion of the video as well as scene descriptions, scene changes, etc. Information describing various aspects of the content may thus captured and made available for use in an information management system. In a medical context, a user might identify an object as being a surgical report, pathology report, x-ray of a patient's arm, or otherwise relevant to an individual's healthcare. The descriptive data elements may be freely entered, or selected from a list provided by the application.

Metadata in the above example may be incorporated into the video file itself as part of a video plus metadata file, into its own file (or files or records) separate from the video file itself, or both in the file and separately.

In an embodiment, metadata may be derived while the subject data is in transport. This is done through programmatic analysis (such as described herein) of the data while the data is being communicated from one system to another. Such analysis requires access to all of the data contained within the complete data packet. This may be accomplished in a manner similar to packet sniffing and can be performed in real-time at wire-speed (non-blocking) or at speeds that are slower than the original transmission speed. In an embodiment using this approach, a proxy may be configured to interact with the transmitter and intended recipient and control the proper flow of data.

For example, video files can be copied and/or moved from one system to another electronically via a network. Video files may also be streamed from one system to another for immediate viewing. During the transport of these files (such as for copying, moving, or streaming) analysis can be performed and metadata can be derived.

Additional transport related metadata can also be derived such as: Source Address, Destination Address, Source MAC (Media Access Control), Destination MAC, protocol used, route taken, and so on. In addition, metadata created by applications may also be discovered during transport. This information can also be used for ILM purposes.

In an embodiment, metadata may be derived while the subject data resides on storage media. This is done through programmatic analysis (such as described herein) of the data while the data is held in some form of storage. For example, video files reside on hard disk drives, optical storage media such as DVDs, tape, and so on. While resident on these storage systems, these files can undergo programmatic and/or manual analysis from which metadata can be derived. Additional storage related metadata may also be derived such as: logical unit (LUN), Volume, Folder, Path, Block, Sector, and so on.

In addition, metadata created by applications can also be discovered in stored data. This information can also be used for ILM purposes.

As described herein, a file or data set may have its content analyzed for the determination of an appropriate policy. In one embodiment, a policy may be selected and applied based on the analysis of the content of a file/data set in context to the content and/or analysis of the content of multiple files and data sets. Multiple documents/files/objects may contain information related to the same topic but have filenames, titles, subject headers, etc. that do not reflect this relationship. By examining and analyzing these objects, it is possible to group them and apply appropriate policies based on this analysis.

For example, in a medical enterprise there may be multiple documents related to a specific patient's condition, treatment, etc. Physicians, technicians, nurses, orderlies, equipment/service installers (such as for TV, telephones, etc.) may each have management and activity reports which could reference a patient. In some cases, the report may contain references to multiple patients and a variety of topics. In these cases it cannot be determined whether the object is relevant to a patient's healthcare. By examining the content, references to specific patients can be found and their relevance to certain policies can be determined. For example, a keyword-driven search or natural language analysis may be utilized. Thus, multiple documents/files/objects may be associated to a patient healthcare policy or other policy.

In one embodiment, the information management system may examine the content within an object to determine which, if any, other objects should be examined for relevant data. These examinations can cross multiple data types—from text documents to email to voicemail to video recordings to images and so on. For example, a text document may refer to a patient's diagnostic X-Ray and perhaps also the date and location it was taken. Based on this reference, the system could locate the video surveillance recordings taken during the referenced diagnostic session. The video recording's content could then be analyzed to determine if the video contains information relevant to the patient; e.g. is the patient present in the recording, the identity of others present, what diagnostic procedures were performed, etc. This information could be used to find the x-rays, radiologist's findings, etc.

Found documents may be analyzed in a similar manner. For example, the document might refer to a surgery and x-rays, leading to a search for x-rays and a post-operative report. The post-operative report may refer to a biopsy, which could then cause the system to search for the pathology report. The x-rays may have a link to the radiologist's report. If relevant, some or all of the objects may be associated as part of an information group of multiple files and/or documents to which specific policies are applied.

In one embodiment, an object may contain data about other objects that are related to the first object, such as in the form of links, filenames, or other resource locators. This data may be manually entered by the user, such as by embedding the data within the object, adding the data to the object's metadata, selecting from a list of objects, selecting a template of objects typically associated with the object, etc.

In one embodiment, the data may be derived programmatically (e.g. by the application), which could for example use information about objects typically associated with the object, or observe which objects are accessed while a user is editing or otherwise accessing the object. This information could be stored in the object's metadata. Any combination of the foregoing may be used. For example, if the user selects from a list identifying the patient as being treated on an outpatient basis for a bacterial infection, the user or the application could then identify objects for the patient's lab report, cell culture, prescriptions, etc. A surgical patient could have objects for diagnostic procedures, surgical supplies used, operating room, x-rays, prescriptions, post-operative report, etc.

All or some of these objects may be associated as part of an information group of multiple objects to which policies are applied, automatically or after evaluation of their content to determine relevance.

In one embodiment, illustrated in FIG. 6, a dynamic policy selector (DPS) 100 may be configured with a set of DPS policies that direct its actions. A DPS policy could specify an action such as:

-   -   Inspect each file from User A. If the file contains ‘Explosion’         use IM Retention Policy 5 and IM Class of Service Policy 1.

Another DPS policy might be:

-   -   Look at each file with IM Retention Policy 5 associated to it.     -   If the file is from User A and has not been touched in 6 months,         apply IM Class of Service Policy 2.

The DPS 100 may thus have a set of policies and act as a policy manager/scheduler, as shown in FIG. 6. The DPS 100 performs the actions (inspection, analytics or activating other analytic engines, etc.), the DPS policies specify what actions the DPS should take (such as “look for the word ‘explosion’ in files last used no earlier than January 2004”), and the DPS policy manager/scheduler tells the DPS 100 which DPS policies to use and when (such as “inspect all of User A's files every day using the Security policy”).

The DPS 100 may thus be used to generate metadata that may be used to drive the IM system.

For example, an object may be determined to contain patient health care data (based on the DPS analysis of the object) and thus subject to HIPAA (Health Insurance Portability and Accountability Act) regulations requiring a 6-year retention span. The actual determination of which IM policy or policies to apply and their duration may be done by the DPS 100. In this example, the DPS 100 applies a DPS-HIPAA policy. The DPS-HIPAA policy specifies what constitutes a HIPAA file (e.g. keywords, x-ray images, etc.). The DPS's HIPAA policy also specifies that files meeting the criteria must have a retention policy of 6 years.

In one embodiment, the DPS 100 can have knowledge of the appropriate IM policies of the IM system. In one embodiment, the DPS 100 may be separate from the IM system and have no knowledge of IM policies. The DPS 100 may be configured to simply pass the desired retention period requirement to the IM Policy Manager 16 which would in turn select the appropriate IM policy to meet the requirement.

The DPS 100 may use the IM Policy Manager 16, which keeps the associations of the IM policies to the relevant object. The IM Policy Manager 16 may be invoked and controlled manually or programmatically (such as by the DPS 100). In one embodiment, the IM Policy Manager 16 does not determine which policies are to apply, nor does it set the duration directly. The IM Policy Manager 16 can break or revoke associations between policies and the objects to which they are associated. The DPS 100 may also be configured to disassociate or terminate policy and object relationships by issuing a command to the IM Policy Manager 16 to terminate a policy.

Once an IM policy or policies are selected, they are applied to the object for the term as specified by the DPS policy or policies and required by the DPS 100. Termination and/or changes of the application of the IM policies can also be done by the IM policies themselves (which may be self-limiting), by the IM Policy Manager 16, or by the DPS 100.

Although the methods and systems herein have been described with respect to an illustrative embodiment, it should be appreciated that the methods and systems disclosed are independent of the precise architecture of the information management system, dynamic policy selector, content analysis engine, storage system, etc. used for processing data. Functions and capabilities may be distributed among various systems in a variety of ways, and the principles of the invention are independent of the exact tasks performed by each system. They are applicable to tape storage, optical devices, hard disk drives, and all other types of data storage.

For the sake of clarity, the processes and methods herein have been illustrated with a specific flow, but it should be understood that other sequences may be possible and that some may be performed in parallel, without departing from the spirit of the invention. Additionally, steps may be subdivided or combined. As disclosed herein, software written in accordance with the present invention may be stored in some form of computer-readable medium, such as memory or CD-ROM, or transmitted over a network, and executed by a processor.

All references cited herein are intended to be incorporated by reference. Although the present invention has been described above in terms of specific embodiments, it is anticipated that alterations and modifications to this invention will no doubt become apparent to those skilled in the art and may be practiced within the scope and equivalents of the appended claims. More than one computer may be used, such as by using multiple computers in a parallel or load-sharing arrangement or distributing tasks across multiple computers such that, as a whole, they perform the functions of the components identified herein; i.e. they take the place of a single computer. Various functions described above may be performed by a single process or groups of processes, on a single computer or distributed over several computers. Processes may invoke other processes to handle certain tasks. A single storage device may be used, or several may be used to take the place of a single storage device. The present embodiments are to be considered as illustrative and not restrictive, and the invention is not to be limited to the details given herein. It is therefore intended that the disclosure and following claims be interpreted as covering all such alterations and modifications as fall within the true spirit and scope of the invention. 

What is claimed is:
 1. A method of managing a lifecycle of an object having data and associated metadata, comprising: analyzing the data associated with contents of the object stored in a storage device by identifying a type of data stored in the object and analyzing the data based on the identified type, wherein the type of data includes audio, video, or text data, wherein the data passes through an application layer, a transport layer, and a storage layer, wherein one or more of the layers derive metadata, wherein data is analyzed based on a determination of one or more appropriate policies selected and applied based on the data, analyzing the metadata associated with the object, wherein metadata of the object describes attributes associated with the data of the object and includes file metadata, transport metadata, or storage metadata, and wherein the data of the object is separate from metadata of the object; associating the object to one or more information lifecycle management policies based on the analysis of the identified type of data associated with the contents of the object and metadata of the object; and implementing the one or more information lifecycle management policies associated with the object.
 2. The method as recited in claim 1, further comprising determining a content type of the object from the metadata, and using the type of the object in analyzing the data of the object.
 3. The method as recited in claim 1, wherein the information lifecycle management policy indicates quarantine.
 4. The method as recited in claim 3, further comprising quarantining the object.
 5. The method as recited in claim 1, wherein the information lifecycle management policy indicates a service level to be assigned.
 6. The method as recited in claim 5, further comprising assigning a service level to the object.
 7. The method as recited in claim 6, further comprising assigning, based on the service level, at least one parameter selected from the group comprising performance, latency, bandwidth, security, availability, backup frequency, level of encryption, number of copies, compression, media type, data migration, retention period, or access control.
 8. The method as recited in claim 1, further comprising associating a date of disposition with the object.
 9. The method as recited in claim 8, wherein the information lifecycle management policy indicates an action to be taken, and further comprising taking the action when the date of disposition has been reached.
 10. The method as recited in claim 1, further comprising generating metadata based on the data analysis.
 11. The method as recited in claim 10, further comprising associating the generated metadata with the object.
 12. The method as recited in claim 11, further comprising storing the generated metadata apart from the object.
 13. The method as recited in claim 11, wherein associating the object to the information lifecycle management policy is further based on the generated metadata.
 14. The method as recited in claim 1, wherein analyzing the data of the object includes identifying keywords or phrases within the object.
 15. The method as recited in claim 1, wherein analyzing the data of the object includes matching patterns within the object to know patterns.
 16. A system for managing a lifecycle of an object having data and associated metadata, comprising a processor configured to: analyze the data associated with contents of the object by identifying a type of data stored in the object and analyzing the data based on the identified type, wherein the type of data includes audio, video, or text data, wherein the data passes through an application layer, a transport layer, and a storage layer, wherein one or more layers derives metadata, wherein data is analyzed based on a determination of one or more appropriate policies selected and applied based on the data content; analyze the metadata associated with the object, wherein metadata of the object describes attributes associated with the data of the object and includes file metadata, transport metadata, or storage metadata, and wherein the data of the object is separate from metadata of the object; and associate the object to one or more information lifecycle management policies based on the analysis of the identified type of data associated with the contents of the object and metadata of the object; and implement the one or more information lifecycle management policies associated with the object.
 17. The system as recited in claim 16, further configured to generate metadata reflecting an analysis of the data.
 18. The system as recited in claim 17, further configured to use the generated metadata to associate the object to an information lifecycle management policy.
 19. A computer program product for managing a lifecycle of an object having data and associated metadata, comprising a non-transitory computer storage medium having machine readable code embodied therein for: analyzing the data associated with contents of the object stored in a storage device by identifying a type of data stored in the object and analyzing the data based on the identified type, wherein the type of data includes audio, video, or text data, wherein the data passes through an application layer, a transport layer, and a storage layer, wherein one or more of the layers derive metadata, wherein data is analyzed based on a determination of one or more appropriate policies selected and applied based on the data; analyzing the metadata associated with the object, wherein metadata of the object describes attributes associated with the data of the object and includes file metadata, transport metadata, or storage metadata, and wherein the data of the object is separate from metadata of the object; and associating the object to one or more information lifecycle management policies based on the analysis of the data associated with the contents of the object and metadata of the object; and implementing the one or more information lifecycle management policies associated with the object. 